DEXE 暴跌 15%,卖方主导地位飙升 – 警示信号?

ambcryptoPublished on 2026-04-09Last updated on 2026-04-09

Abstract

DEXE价格大幅下跌15%,从9.2美元跌至7.3美元,失守8美元关键支撑位,与整体加密货币市场的反弹走势相反。下跌原因包括交易者获利了结、卖方主导度升至93万(买方降至58万),以及衍生品市场出现大量平仓行为。未平仓合约下降而交易量上升,净流出34.2万美元,显示市场看空情绪强烈。技术指标如抛物线转向和MACD均显示下行压力加大。若价格无法收复7.9美元,可能进一步下探7美元甚至5.1美元;反之,若能突破7.9美元,则可能回升至9.2美元。

尽管全球紧张局势缓和和停火谈判推动更广泛的加密货币市场反弹,DEXE 仍大幅下跌。

在失去 8 美元支撑位后,该山寨币从 9.2 美元跌至 7.3 美元。截至发稿时,Dexe [DEXE] 交易价格为 7.6 美元,日内下跌 15.27%。周跌幅接近 8%。

此次下跌使该山寨币跌破其抛物线转向指标 (Parabolic SAR),表明下行压力强劲。

为什么 DEXE 转为看跌?

随着交易者平仓离场和市场情绪转向看跌,DEXE 抹去了其每周涨幅。

该代币在整个三月份及过去一周一直处于上升趋势。这一走势吸引了投资者在近期高点附近获利了结。

来源:TradingView

卖方主导度 (Seller Dominance) 上升至 93 万,而买方主导度 (Buyer Dominance) 下降至 58.2 万。

与此同时,卖方强度 (Sellers’ Strength) 攀升至 62,而买方强度 (Buyers’ Strength) 下降至 37。这一转变证实了卖盘压力的增加。

这一动向与交易量激增 109% 同时发生,而这主要由抛售活动驱动。持续的抛售压力通常会削弱价格结构。

DEXE 交易者正在退出衍生品头寸吗?

随着市场开始降温并出现回调,投资者从期货市场撤资以降低风险敞口。

根据 CoinGlass 数据,未平仓合约 [OI] 下降 1.37% 至 2000 万美元,而衍生品交易量却增长了 80%。这种不匹配表明衍生品市场的抛售活动增加以及头寸的减少。

来源:CoinGlass

与此同时,期货资金流出增加,升至 1470 万美元,而流入资金则降至 1436 万美元。结果,期货净流量下降了 172% 至 -34.2 万美元,表明存在激进的抛售活动。

这表明期货市场的大多数交易者都在减少风险敞口并平仓。在大多数情况下,当交易者在下跌趋势中 aggressively 平仓时,这表明强烈的看跌情绪。

来源:CoinGlass

DEXE 的下一步是什么?

动量指标反映了近期下跌后结构的疲软。

MACD 和 SMA 显示价格正回撤至短期移动平均线。这表明在反弹之后动量正在放缓。

来源:TradingView

即便如此,尽管出现回调,DEXE 仍处于更广泛的上升趋势中。

日收盘价若能高于 7.9 美元,可能支撑价格向 9.2 美元复苏。若未能收复该水平,则可能导致重新测试 7 美元。如果抛售持续,5.1 美元仍是下一个下行目标位。


最终总结

  • DEXE 失守 8 美元支撑位并大幅下跌,确认了短期趋势的明显转变。
  • 若能升至 7.9 美元上方可能支撑复苏,而失败则增加重新下探 7 美元及更低水平的风险。

Related Questions

QDEXE价格在文章发布时下跌了多少百分比?

ADEXE在文章发布时下跌了15.27%。

Q导致DEXE转向看跌的主要原因是什么?

ADEXE转向看跌的主要原因是交易者退出头寸、情绪转为看跌,以及在近期高点附近出现获利了结活动。

Q卖方主导度和买方主导度的具体数值是多少?

A卖方主导度上升至93万,而买方主导度下降至58.2万。

QDEXE的未平仓合约和衍生品交易量有何变化?

A未平仓合约(OI)下降了1.37%至2000万美元,而衍生品交易量上升了80%。

QDEXE价格可能恢复的关键阻力位是多少?

ADEXE价格恢复的关键阻力位是7.9美元,如果能够突破这一水平,可能支持价格向9.2美元恢复。

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